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Finance and Economics Discussion SeriesDivisions of Research & Statistics and Monetary Affairs
Federal Reserve Board, Washington, D.C.
The Low Frequency Effects of Macroeconomic News onGovernment Bond Yields
Carlo Altavilla, Domenico Giannone, and Michele Modugno
2014-52
NOTE: Staff working papers in the Finance and Economics Discussion Series (FEDS) are preliminarymaterials circulated to stimulate discussion and critical comment. The analysis and conclusions set forthare those of the authors and do not indicate concurrence by other members of the research staff or theBoard of Governors. References in publications to the Finance and Economics Discussion Series (other thanacknowledgement) should be cleared with the author(s) to protect the tentative character of these papers.
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Low Frequency Effects of
Macroeconomic News on
Government Bond Yields
Carlo Altavillaa, Domenico Giannoneb, and Michele Modugnoc
Abstract
In this study, we analyze the reaction of the U.S. Treasury bondmarket to innovations in macroeconomic fundamentals. We identifythese innovations based on macroeconomic news, which are defined asdifferences between the actual releases and market expectations. Wefind that that macroeconomic news explain about one-third of the lowfrequency (quarterly) fluctuations in long-term bond yields. When wefocus on the high frequency (daily) movements, this decrease to one-tenth. This is because macroeconomic news have a persistent effect on
bond yields, whereas non-fundamental factors have substantial effectson the day-to-day movements of bond yields, although their effectsare shorter lived.
Keywords: macroeconomic announcement, news, treasury bond yield
JEL classification: E43; E44; E47; G14.
We would like to thank Marco Del Negro, Luca Guerrieri, Refet Gurkaynak, NellieLiang, Roberto Motto, Kleopatra Nikolaou, and Steve Sharpe for helpful comments anddiscussions, and seminar participants at the Federal Reserve Board, European CentralBank, George Washington University, University of York, Universite libre de Bruxelles,
the CSEF-IGIER Symposium on Economics and Institutions, the 22nd Symposium ofthe Society for Nonlinear Dynamics and Econometrics, Birmingham Macroeconomics andEconometrics conference, and EMMPA 2014 in Bucharest. Domenico Giannone was sup-ported by the Action de recherche concertee contract ARC-AUWB/2010-15/ULB-11and by IAP research network grant no. P7/06 from the Belgian government (BelgianScience Policy). The opinions in this paper are those of the authors and do not neces-sarily reflect the views of the European Central Bank, the Eurosystem, or the Board ofGovernors of the Federal Reserve System.
aEuropean Central Bank, email: [email protected] University of Rome, ECARES, EIEF and CEPR, email: [email protected] Reserve Board, email: [email protected]
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1 Introduction
We analyze the reaction of the U.S. Treasury bond market to innovations
in macroeconomic fundamentals. We identify innovations in macroeconomic
fundamentals based on macroeconomic news, which we define as the differ-
ences between the actual macroeconomic releases and the median market
predictions by participants for those releases. Our analysis is based on the
regression of the daily changes in bond yields on macroeconomic news, inthe same manner as event studies. The fit of the regression and the cor-
responding residuals are defined as the fundamental and non-fundamental
components of bond yield changes, respectively.
Identifying innovations in macroeconomic fundamentals based on macroe-
conomic news is a natural strategy. In most industrialized countries, various
macroeconomic indicators are released by national statistical agencies and
specialized private firms almost every calendar day. Policy makers, media
commentators, and market participants monitor the real-time data flow con-
stantly and somewhat obsessively. The market participants also make a
prediction for almost every macroeconomic release and whenever they are
surprised asset prices tend to move.
Focusing on high frequency changes can facilitate the correct identifi-
cation of the causal effects of macroeconomic news by reducing the effects
of confounding factors and by limiting reverse causality issues (see Gurkay-
nak and Wright, 2013; Kuttner, 2001; and Cochrane and Piazzesi, 2002). In
agreement with previous studies, we find that several types of macroeconomic
news are economically important and they have statistically significant im-
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pacts on daily changes in bond yields. However, their explanatory power is
quite limited, i.e., theR2 value of the regression is about 10% only. Thus, we
develop a method to isolate the low frequency effects of macroeconomic news
while preserving the information provided by the high frequency reaction of
asset prices to the release of macroeconomic information in real-time. By
summing the fit of the daily regressions over a month (quarter), we obtain
the fit for the monthly (quarterly) changes in bond yields. The fundamental
component become more important when focusing on these low-frequency
changes; indeed, moving from daily to quarterly increases the R2 value to
over 30%. This is because macroeconomic news has a persistent effect on
bond yields, whereas the effect of non-fundamental factors is less persistent
and it tends to average out when focusing on longer horizon changes. In
other words, the importance of macroeconomic factors might be hidden by
the high frequency noise that dominates the daily fluctuations in bond yields.
Interestingly, the interaction between macroeconomic news and yields
did not break apart after the zero lower bound became binding at the end
of 2008. In agreement with Swansson and Williams (2014), we find that
the high frequency effects remained stable. More interestingly, we show that
macroeconomic news continued to exert an important influence at a low fre-
quency on changes in bond yields. This evidence corroborates the view that
the non-standard monetary policies adopted by the U.S. Federal Reserve,
i.e., a combination of forward guidance and large-scale asset purchases, have
been successful in keeping the bond yields anchored to macroeconomic news,
thereby limiting non-fundamental fluctuations during a period of high eco-
nomic uncertainty.
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Our results reconcile some contrasting findings obtained in previous stud-
ies. As stressed above, event studies indicate that macroeconomic releases
account for only a small proportion of the daily variation in bond yields
(see Gurkainak, 2014). By contrast, macro-finance models estimated at
monthly or quarterly frequencies can explain a significant fraction of the
bond yield fluctuations with macroeconomic variables (see Ang and Piazzesi,
2003, Diebold et al., 2006, Coroneo et al., 2013). We rationalize this empirical
evidence by identifying the role of the relative persistence of the fundamental
and non-fundamental components in influencing bond yield fluctuations over
different time spans.
The remainder of the paper is organized as follows. Section 2 describes
macroeconomic news and its effects on bond yields at different frequencies.
We discuss how our findings affect excess bond returns for investors with
different investment horizons. Section 3 demonstrates the effect of macroeco-
nomic news on stock price returns and exchange rates at different frequencies.
Section 4 analyzes the impact of macroeconomic news before and during the
zero lower bound period. Section 5 concludes this study.
2 Effects of Macroeconomic News on Bond
Yields at High and Low Frequencies
The data used in this study came from various sources. We use the zero-
coupon yields constructed by Gurkaynak, Sack, and Wright (2007) from 1-
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to 10-year horizons.1 This dataset also includes the parameters estimated for
the model of Svensson (1994) to smooth the yield data. In principle, one can
retrieve any desired maturity using these parameters. Section 2.3 reports the
3-month holding period excess returns computed using data generated with
these parameters for the maturities that were not available in Gurkaynak,
Sack, and Wright (2007) plus the 3-month Treasury bill.2
In order to simulate the macroeconomic information that is available in
real time to market participants, we use the data contained in the Economic
Calendars (ECO) provided by Bloomberg. For each macroeconomic release,
this dataset contains the realized value and the predictions made by a panel
of market participants for the same value. ECO survey forecasts normally
start one to two weeks before each release and they are updated in real time
until the macroeconomic variable is released officially. The survey value used
in the empirical analysis is the median (consensus) forecast. Using both
the official releases and the corresponding forecast for each macroeconomic
variable allows us to reconstruct the size and direction of all news that hit
the market at each point in time.
The first column of Table 1 provides an overview of the macroeconomic
variables used in the analysis. The sample period is January 1, 2000 to
January 28, 2014. We consider all U.S. macroeconomic news available for
the entire sample, with a total of 41 variables. For some of the listed vari-
ables, Bloomberg collects more than one release. This is the case for the
1This dataset is publicly available on the website of the Federal Reserve Board. Thedaily data can be obtained at www.federalreserve.gov/pubs/feds/2006/.
2These data are publicly available on the website of the Federal Reserve of St Louis atwww.research.stlouisfed.org/fred2/.
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GDP annualized QoQ and GDP price index, for which we have advanced
(A), second (S), and third (T) releases; and for nonfarm productivity, unit
labor costs, and the University of Michigan Confidence, for which we have
preliminary (P) and final (F) releases. We treat these releases as separate
variables. The second column of Table 1 shows the relevance index. The
value of this index corresponds to the percentage of Bloomberg users who
set an alert for a particular event. For example, over 98% of the users set an
alert to be notified before the scheduled release of the change in the nonfarm
payrolls variable. This index gives an idea of the releases that are important
to market participants. Note that the number of releases observed for each
variable depends on its frequency. The third column indicates the frequency
of each variable, i.e., whether it is released on a weekly (W), monthly (M),
or quarterly (Q) basis. The fourth column reports the publication delay, i.e.,
the average number of days from the end of the period considered for each
variable and the day of release. For example, the change in the nonfarm
payrolls data is usually released 4 days after the end of the reference month.
A negative entry, such as the University of Michigan Confidence, means that
the variable is released before the end of the reference period.
2.1 Empirical analysis based on the daily frequency
First, we analyze the daily reaction of bond yields to macroeconomic news.
Thus, we regress the daily change in a bond yield yt at maturityon day
t on a constant and on the news released on day t, according to Equation
(1). If variable i was not released at time t, we set newsi,t = 0.
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yt =c+n
i=1
inewsi,t+t (1)
Table 1 shows the regression coefficients () based on the regression de-
scribed in Equation (1) for the bond yields with 1-, 5-, and 10-year matu-
rities.3 We use boldface to denote coefficients that differ significantly from
zero at the 5% confidence level. Three groups of variables are particularly
important for explaining the daily changes in yields throughout the wholematurity spectrum: surveys (consumer confidence, ISM manufacturing and
non-manufacturing, Philadelphia Fed. economic outlook, and University of
Michigan Confidence preliminary), employment-related variables (change in
nonfarm payrolls and initial jobless claims), and other macroeconomic vari-
ables (e.g., GDP annualized QoQ advanced and advanced retail sales). Sur-
veys are important because of their timeliness, as they are the first types of
information available regarding the economic condition in the current month.
Jobless claims are released on a weekly basis. Similar to surveys, jobless
claims are very timely, which makes them useful to market participants for
understanding the labor market conditions. Finally, other variables such as
GDP, nonfarm payrolls, and sales are important indicators of the state of the
economy and they are monitored closely by the Federal Reserve in order to
determine its monetary policy stance. Thus, these indicators are also rele-
vant to market participants. The last row of Table 1 shows theR2 values for
the regression described in Equation (1). Some of the regression parameters
3Note that to facilitate the comparison, macroeconomic news were standardized bydividing the difference between the actual and the predicted value of each variable by thecorresponding sample standard deviation.
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are statistically significant, but macroeconomic news explains only a small
fraction of the daily variation in bond yields, i.e., less than 10%.
INSERT TABLE 1 HERE
2.2 Empirical analysis at lower frequencies
Let us define the daily news index 1yt = nix1,t as the fitted value from
Equation (1). To analyze the persistence of the effects of macroeconomic
news on yield changes, we aggregate the yields and news indices over different
time spans. Specifically, we aggregate the daily changes in bond yields to
obtain longer horizon changes.
yt yth :=
hyt =h1j=0
ytj (2)
Similarly, we sum the daily news indices to obtain longer horizon news
indices at daily frequencies, as follows.
nixh,t =h1j=0
nix1,tj (3)
The effect of these aggregations on the yields is to cleanse the series
of high-frequency fluctuations and to give more weight to fluctuations with
frequencies lower thanh days.
The following analysis focuses on regression equations:
hyt =h,nixh,t +
h,t , (4)
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where h, measures the impact of the sum of the news on the change in
yields over h days and it enforces the orthogonality between the fundamen-
tal and non-fundamental components at any horizon.4 The fitted value of
Equation (4), hyt, represents the part of the hdays changes in the bond
yields attributable to macroeconomic fundamentals. On average there are
22 trading days per month, thus 22yt and 22yt approximately correspond
to the actual and fitted monthly changes in the bond yields at maturity ,
respectively. By contrast, 66yt and 66yt refer to quarterly changes. The
residual, hyt hyt, defines the component driven by non-fundamental
factors. In the following, we refer to hyt and hyt hyt as the funda-
mental and non-fundamental components of thehdays changes in the bond
yields with maturity , respectively.
For simplicity, we define the part of the bond yields that is not explained
by macroeconomic news as the non-fundamental part; however, we have to
consider that this part includes fundamental innovations that we cannot ex-
tract. The types of macroeconomic news considered in this study are only
a subsample of the innovations in macroeconomic fundamentals that may
affect U.S. Treasury yields. We do not consider surprises related to policy
announcements regarding monetary and fiscal policy interventions. More-
over, we only consider U.S. variables, but international factors could also
have played important roles. Most importantly, we only control for par-
tial measures of the news because Bloomberg collects the expectations for
headline information whereas macroeconomic data releases include numerous
disaggregated details. Recently, Gurkaynak (2014) showed that considering
4Note that all of these results can be confirmed qualitatively if we do not include .
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unmeasured news greatly increases the explanatory power of macroeconomic
releases that occur at a high frequency.
Figure 1 shows the actual and fitted values for the daily, monthly, and
quarterly yield changes (h = 1, 22, 66) in government bond yields with =
1, 5, 10-year maturities. Figure 2 shows the R2 values for the regressions.
INSERT FIGURES 1 HERE
INSERT FIGURE 2 HERE
If we consider only the actual values, i.e., the actual changes in bond
yields, we can explain the effect of filtering better. Thus, the more we filter,
i.e., aggregate the daily changes into monthly and quarterly changes, the
more we cleanse our series of high frequency noisy fluctuations, thereby
highlighting the low frequency fluctuations. In other words, filtering identifies
the long-term patterns or low-frequency fluctuations in our variables. If we
consider the fitted values obtained from Equation (1), it is evident that the
fit is quite poor for the daily changes. However, if we consider the monthly
and quarterly changes, the fitted values can capture a larger fraction of the
variation in the bond yield changes.
It is useful to introduce a measure of persistence to better understand
what drives the observed increase in the R2 value with the horizon of the
changes. According to Cochrane (1988) and Cochrane and Sbordone (1988),
the persistency of a series, such as xt, can be assessed by considering 1/h
times the variance in the h-period change, i.e., 1/h var(xt xth), as a
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shocks to the non-fundamental components to be reverted.
INSERT FIGURE 3 HERE
In summary, these results indicate that after the high frequency fluctu-
ations in yields are filtered out via aggregation, the macroeconomic news
component has a strong explanatory power, i.e., up to 25% for the monthly
aggregation and 35% for the quarterly aggregation. This is because although
the effects of macroeconomic news on yields are persistent, the high-frequency
fluctuations due to non-fundamental factors tend to be short-lived, thus they
are aggregated and less evident within the course of one month (or quarter).
The impact of macroeconomic news tends to be long-lasting, thus these type
of news are more suitable for explaining low frequency fluctuations in gov-
ernment bond yields.
These results reconcile the findings of the high frequency event-study lit-
erature with the macro-finance literature. Ang and Piazzesi (2003), Diebold
et al. (2006), and Coroneo et al., (2013) show that when estimating mod-
els at monthly or quarterly frequencies, significant proportions of the bond
yield fluctuations are driven by macroeconomic variables that measure real
activities and prices. Our findings explain why this correlation exists at
low frequencies, i.e., macroeconomic news persistently affects the portfolio
strategies of fixed-income market participants.
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2.3 Implications for Excess Returns
The low frequency fluctuations in yields are closely related to bond returns
for investors with holding periods longer than one day.
To observe this relationship, we define rx,kt as thek-day holding period
excess bond return. We have:
rxk,t+k = ( k)ykt+k + y
t y
kt, (5)
where ( k)ykt+k is the (log) price at which the bond is sold at timet + k
for selling a bond with maturity k, yt is the (log) price paid at time t
when the bond reaches maturity , and ykt is the interest paid for borrowing
money for the period k . Thus, Equation (5) can be rewritten as:
rxk,
t+k= ( k)yk
t ( k)
k
i=1
yk
t+i + y
t yk
t. (6)
Fork = 66, which is equivalent to one quarter, by substituting66
i=1yt+i
with the fit obtained from Equation (4), we obtain the fitted k-days holding
period excess bond return:
rx66,t+66= ( 66)y
66t ( 66)q,
66nixq,
66t+66 + yt y66t . (7)
In order to compute the k-days holding period excess bond returns with
maturities of= 12, 24, 36, 48, 60, 72, 84, 96, 108, and 120 months, we need
to generate the yields with maturity k. These yields can be generated
using the parameters of the model proposed by Svensson (1994), which are
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included in the dataset of Gurkaynak, Sack, and Wright (2007).
Figure 4 shows the excess returns based on a 3-month holding period for
an equally weighted portfolio of bonds with maturities ranging from 1 to 10
years and the implied fitted value obtained from the regression described in
Equation (7).5
We study the external validity of the model based on a pseudo-out-of-
sample exercise. We compute the fitted return using the parameters esti-
mated from the data up to December 15, 2008. The sample split is selected
to coincide with the date when the monetary policy reached the Zero Lower
Bound.6 The fitted returns for the remaining part of the sample are computed
using these parameters. The out-of-sample fit is shown in Figure 4, where
the shaded area highlight the period used for the out-of-sample validation.
Figure 4 shows clearly that the macroeconomic fundamentals perform well
in tracking the 3-month holding period excess bond return and they explain
35% of its fluctuations. The in-sample and out-of-sample fits are remarkably
similar and almost undistinguishable, thereby indicating that the importance
of macroeconomic news in driving bond returns is a robust result and not an
artifact due to overfitting or to other spurious effects.
INSERT FIGURES 4 HERE
Empirical research into financial economics has shown that a significant
fraction of the variation in excess bond returns is predictable. Fama and Bliss
5The return of this portfolio and the relative fit, respectively, are defined as: rx66t =110
=[12,24,...,120]rx
,66t and
rx66t = 110
=[12,24,...,120] rx
,66t .
6We return to this issue in Section 4.
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(1987) and Campbell and Shiller (1991) showed that excess returns can be
predicted based on the forward rate spreads and yield spreads. Cochrane and
Piazzesi (2005) found that about one-third of the variation in excess bond
returns can be predicted using a linear combination of forward rates. Un-
derstanding the reasons and the sources of such predictability are important
questions in economics and finance. The decomposition of the bond returns
derived above may help to shed some new light on this old debate.
In the following, we show that the predictability of returns is due to non-
fundamental fluctuations because the component of bonds returns driven by
macroeconomic news is unpredictable. We construct a factor similar to that
used by Cochrane and Piazzesi (2005), except it is for a 3-month holding
period (we refer to this as the CP factor), and we find that it can only
predict the non-fundamental part of the excess bond returns. We construct
the CP factor from the available yields with maturities of 12 to 120 months
and from the generated yields with maturities of 9, 21, 33, 45, 57, 69, 81, 93,
105, and 117 months. First, we compute the bond log prices:
pt yt
and then the log forward rate between time t+ 66 and t+ as:
fwt p66t p
t .
We collect the intercept, the 3-month Treasury bill, and the forwards in
the vector gt = [1, y3t , fw
12t , fw
24t ,...,fw
120t ]
, and estimate the parameters of
the following equation:
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rx66t =gt66+ t,
where we define CPt = gt. To understand how much of the excess bond
returns can be predicted by the yield curve itself, we perform the following
predictive regression:
xt = c+2CPt
66+wt, (8)
where xt is in turn rx66t , the observed 66-day holding period excess bond
return; f66t 110
=[12,24,...,120]( 66)
q,66nixq,66t+66 is the fundamental
part of the 66-day holding period excess bond return; and nf66t = rx66t f
66t
is the non-fundamental part. Table 2 shows the coefficients and the relative
R2 values of these regressions for the three dependent variables.
The results show that the CP factor predicts a large proportion (20%)
of the excess bond returns. Unsurprisingly, this proportion is related mainly
to the non-macroeconomic news part, nft (18%), whereas the CP factor
explains almost nothing about the news-related part. This result is not
surprising if we consider the nature of the elements we are analyzing, where
the forward prices are determined by market participants at time t 66
given the information available at that time. By definition, macroeconomicnews comprises surprises for market participants (i.e., innovations to their
information set) that occur between time t 65 and t, thus they cannot be
predicted by forward rates that are based on the information available to
market participants at time t 66.
In summary, the predictable component of bond returns is non-fundamental
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Equation (1). The fits of the returns due to macroeconomic news over dif-
ferent horizons are shown in Figure (5)
INSERT TABLE 3 HERE
INSERT FIGURES 5 HERE
For the trade-weighted U.S. dollar index, six types of news have statisti-
cally significant impacts: changes in nonfarm payrolls, ISM manufacturing,
producer price index (excluding energy and food), unemployment rate, ad-
vanced GDP, and the final release of nonfarm productivity. However, macroe-
conomic news do not have a persistent effect on the exchange rate. As shown
in Table 3, the R2 value for the daily changes, Equation (1), is equal to 2%,
and the R2 values became lower as we filter out more dependent variables,
i.e., the monthly and quarterly R2 values from Equations (4) are equal to
zero.
In our analysis of S&P 500 returns, we find that only four types of
macroeconomic news have coefficients that differ significantly from zero: ca-
pacity utilization, ISM manufacturing and non-manufacturing, and retail
sales. However, in contrast to the exchange rate results, the effect of U.S.
macroeconomic news on the S&P 500 stock price index, similar to bond
yields, tends to increase with the horizon, where R2 value is 2% for daily
changes, 5% for monthly changes, and 15% for quarterly changes. Although
the increase in the explanatory power of macroeconomic news with a longer
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horizon is qualitatively similar to that observed for bond yields, the effect of
macroeconomic news onS&P500 returns is quantitatively much smaller. It
is likely that international macroeconomic news is more important for stock
returns than for bond yields, but this is a topic for future research.
4 Government Bonds and Macroeconomic News
at the Time of the Zero Lower Bound
The normal implementation of monetary policy provides a link between
macroeconomic news and Treasury bond yields. In normal times, the central
bank reacts to macroeconomic news by changing the short-term policy rate,
thereby influencing a broad spectrum of fixed income asset classes. However,
this mechanism cannot work at the zero lower bound because the interac-
tion between macroeconomic news and yields may break apart, thus the low
frequency effect of macroeconomic news might disappear. Therefore, we an-
alyze whether our results change since the zero lower bound became binding.
First, we estimate the regression model described in Equation (1) augmented
with a zero lower bound dummies interacting with each type of news:
yt =c+
ni=1
inewsi,t+
ni=1
i(zlbt newsi,t) +t , (9)
wherezlbtis an indicator variable that takes a value of 1 when the zero lower
bound was binding, i.e., from December 16, 2008 to January 28, 2014, and
0 before, i.e., from January 1, 2000 to December 15, 2008. The coefficient
i measures whether the impact of each type of news on the change in bond
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yields varied after the policy rate reached the zero lower bound.
The estimation results are shown in Table 4 for the maturities at =
1, 5, 10 years. The results suggest that although some of these coefficients
change quantitatively in the two subsamples, their differences are rarely sta-
tistically significant, especially for long maturities. The unchanged respon-
siveness of bond yields with long maturities at high frequency was recently
interpreted by Swanson and Williams (2013) as evidence that unconventional
policy actions appear to have helped offset the effects of the zero bound on
medium- and longer-term rates. The fact that these effects have remained
persistent and sizeable over longer horizons lends additional support to this
view.
INSERT TABLE 4 HERE
INSERT FIGURES 6 HERE
Figure 6 shows the R2 values computed during the pre-zero lower bound
period and during the zero lower bound period. The three panels in the figure
show the R2 values for the daily changes, as in Equation (1), and monthly
changes and quarterly changes, as in Equation (4). Interestingly, the inter-
action between macroeconomic news and yields did not break apart. These
results provide evidence that the measures adopted by the Federal Reserve
at the zero lower bound, i.e., forward guidance and large-scale asset pur-
chases, did not weaken the relationship between macroeconomic news and
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bond yields at low frequencies. These results also suggest that the introduc-
tion of explicit macroeconomic targets in the central bank communication
did not influence the sensitivity of sovereign bonds to macroeconomic news.7
As a consequence, market participants continued to pay attention to macroe-
conomic news to understand the state of the economy and to anticipate the
decisions of the Federal Reserve regarding the future monetary policy stance.8
5 Conclusions
Using high frequency data, we found that macroeconomic fundamentals have
sizeable low frequency effects on sovereign bond yields. This feature can-
not be detected by looking at high frequency fluctuations since the effect
of macroeconomic fundamentals is persistent but low in terms of impact
whereas the effect of non-fundamental factors is shorter lived but large interms of impact.
An important implication of our results is that macroeconomic news has a
considerable effect on the dynamics of excess bond returns when the holding
period extends beyond a single day. Interestingly, this is a specific feature
of bond yield returns. The explanatory power of macroeconomic factors for
stock and exchange rate returns also remains low at low frequencies.
7For example, the FOMC Statement of August 2011 stated that Committee currentlyanticipates that economic conditions [....] are likely to warrant exceptionally low levelsfor the federal funds rate at least through mid-2013. On December 12, 2012 the FOMCindicated that a federal funds rate close to zero would remain appropriate at least as longas the unemployment rate remained above 6.5 % and inflation expectations continued tobe well anchored.
8These results are robust and they are not due to overfitting. Indeed, we obtained thesame fit using the parameters estimated in the pre-zero lower bound period for the zerolower bound period.
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Although we considered a large dataset of news, we probably underesti-
mated the importance of macroeconomic fundamentals for bond yields for
several reasons. First, fundamental events may have an immediate effect on
bond yields, but they cannot be captured immediately by macroeconomic
data. Second, Bloomberg does not collect market expectations for all of the
released variables. Third, we only considered U.S. macroeconomic news, but
innovations in the fundamentals of other countries could also be important
for U.S. bond yields. Overall, these considerations suggest that we under-
estimated the effect of macroeconomic fundamentals on bond yields. Thus,
it is highly likely that fundamentals explain more than one-third of the low-
frequency fluctuations in bond yields.
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6 References
Andersen, T. G., T. Bollerslev, F. X. Diebold, and C. Vega (2003). Mi-
cro Effects of Macro Announcements: real time Price Discovery in Foreign
Exchange Markets, American Economic Review Volume 93, Issue 1, pages
38-62.
Andersen, T. G., T. Bollerslev, F. X. Diebold, and C. Vega (2007). Real
time Price Discovery in Global Stock, Bond and Foreign Exchange Markets,Journal of International Economics Volume 73, pages 251-277.
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of Monetary Economics, Elsevier, Volume 50, Issue 4, pages 745-787.
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frequency identification, American Economic Review, 92:90-101.
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nomic Review, Volume 94, Issue 1, pp. 138-160.
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manent Components of GNP And Stock Prices, Journal of Economic Dy-
namics and Control, Volume 12, pp. 255-296.
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conomic Factors in the Yields Curve, ECARES Working Papers 2013-07,
Universite libre de Bruxelles.
Diebold, F. X., G. D. Rudebusch and S. B. Aruoba (2006). The Macroe-
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conomy and the Yield Curve: A Dynamic Latent Factor Approach, Journal
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Figures
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02 04 06 08 10 120.5
0
0.5
daily
1year
02 04 06 08 10 120.5
0
0.55year
02 04 06 08 10 120.5
0
0.510year
02 04 06 08 10 121.5
1
0.5
0
0.5
1
monthly
02 04 06 08 10 121.5
1
0.5
0
0.5
1
02 04 06 08 10 121.5
1
0.5
0
0.5
1
02 04 06 08 10 122
1
0
1
quarterly
02 04 06 08 10 122
1
0
1
02 04 06 08 10 122
1
0
1
actual fit
Figure 1: Daily, monthly, and quarterly bond yield changes
Notes: The figure shows the daily, monthly, and quarterly yield changes for 1-, 5- and 10-yearmaturities, where their fits were obtained using Equations (1) and (4) and estimated for the entiresample from January 1, 2000 to January 28, 2014.
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1 2 3 4 5 6 7 8 9 100
0.05
0.1
0.15
0.2
0.25
0.3
0.35
0.4
0.45
0.5
maturities (in years)
R2
Daily (h=1) Monthly (h=22) Quarterly (h=66)
Figure 2: R2
for the daily, monthly, and quarterly bond yield changes
Notes: The figure shows the R2 values from the regressions of the daily, monthly, and quarterlychanges in yield at different maturities based on the daily, monthly, and quarterly news indexes, asin Equations (1) and (4).
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2 4 6 8 100
0.5
1
1.5
2
2.5
3
3.5
4
x 103 fundamental
maturities (in years)2 4 6 8 10
0
0.5
1
1.5
2
2.5
3
3.5
4
x 103 non fundamental
Daily (h=1) Monthly (h=22) Quarterly (h=66)
2 4 6 8 100
0.5
1
1.5
2
2.5
3
3.5
4
x 103 yields
1/h
var(xt)
Figure 3: 1/h times variance of the h difference in bond yield, the fit, andthe residuals.
Notes: The figure shows 1/h var
hyt
(left panel), 1/h varhyt
(middle panel) and
1/h var
hyt hyt
(right panel), multiplied by 100, for different maturities () and different
horizons: h= 1 (daily), h = 22 (monthly), and h = 66 (quarterly).
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Jul02 Jan05 Jul07 Jan10 Jul12
10
8
6
4
2
0
2
4
6
8
10
actual fit outofsample
Figure 4: Three-month holding period excess bond returnsNotes: The figure shows the 3-month holding period excess bond returns average across maturities(blue line), the fit obtained with the macroeconomic news (red line) using Equation (7), and theout-of-sample (green line). The shaded area indicates the out-of-sample period.
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2 4 6 8 100
0.05
0.1
0.15
0.2
0.25
0.3
0.35
0.4
R2
Daily
preZLB ZLB
2 4 6 8 100
0.05
0.1
0.15
0.2
0.25
0.3
0.35
0.4Monthly
maturities (in years)2 4 6 8 10
0
0.05
0.1
0.15
0.2
0.25
0.3
0.35
0.4Quarterly
Figure 6: R2 values for the pre-zero lower bound and zero lower bound.
Notes: The figure shows the R2 values from the regressions of the daily (left-hand side panel),monthly (center panel), and quarterly (right-hand side panel) changes in yields based on the daily,
monthly, and quarterly news indexes from the pre-zero lower bound and zero lower bound subsam-ples.
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Tables
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Table 1: Macroeconomic News and their Effects on Bond YieldsReleases Relevance Freq Pub. Delay 1-year 5-year 10-yearAdvance Retail Sales 89 M 15 1.20 1.82 1.45Business Inventories 34 M 45 -0.18 -0.18 -0.03Capacity Utilization 61 M 16 1.20 1.52 1.28Change in Nonfarm Payrolls 98 M 4 3.44 4.43 3.59Consumer Confidence 95 M 2 0.87 0.96 0.94Consumer Credit 36 M 38 -0.16 -0.34 -0.38Consumer Price Index (MoM) 93 M 18 0.36 0.58 0.21CPI Ex Food & Energy (MoM) 75 M 18 0.48 0.38 0.31Domestic Vehicle Sales 30 M 3 0.90 0.30 -0.06Durable Goods Orders 91 M 21 0.49 0.78 0.71
Employment Cost Index 71 M 31 0.18 0.36 0.29Factory Orders 82 M 34 0.17 0.23 0.27Housing Starts 88 M 19 0.23 0.32 0.03Import Price Index (MoM) 78 M 11 0.05 0.00 -0.15Industrial Production 87 M 16 -0.02 -0.26 -0.80Initial Jobless Claims 99 W 5 -1.12 -1.57 -1.42ISM Manufacturing 94 M 2 1.73 2.78 2.66ISM Non-Manf. Composite 70 M 2 1.67 2.19 2.01Leading Indicators 84 M 24 0.25 0.72 0.91New Home Sales 90 M 25 0.40 0.59 0.74Personal Income 83 M 21 -0.37 -0.39 -0.31Personal Spending 83 M 21 0.31 0.16 0.13
Philadelphia Fed. 75 M -14 1.11 1.96 1.73
PPI Ex Food & Energy (MoM) 68 M 14 0.27 1.06 1.39Producer Price Index (MoM) 85 M 14 0.04 -0.26 -0.11Retail Sales Less Autos 62 M 15 0.71 0.96 1.25Trade Balance 81 M 41 0.21 0.87 1.19Unemployment Rate 88 M 4 -0.92 -0.66 -0.42Wholesale Inventories 79 M 40 0.10 0.10 0.07GDP Annualized QoQ A 96 Q 26 2.46 2.68 2.28GDP Annualized QoQ S 96 Q 59 -0.44 0.05 0.08GDP Annualized QoQ T 96 Q 80 0.03 -0.91 -1.09GDP Price Index A 77 Q 26 0.38 0.43 0.21GDP Price Index S 77 Q 59 0.81 1.87 1.78GDP Price Index T 77 Q 80 0.43 -1.09 -0.82
Nonfarm Productivity P 35 Q 31 -1.43 -1.95 -1.78Nonfarm Productivity F 35 Q 65 -1.00 -0.95 -0.70Unit Labor Costs P 27 Q 31 0.13 0.48 0.51Unit Labor Costs F 27 Q 65 -0.10 0.22 0.34U. of Michigan Confidence P 93 M -23 1.00 1.65 1.42U. of Michigan Confidence F 93 M -9 0.02 -0.13 0.09R2
daily 0.08 0.08 0.07monthly 0.15 0.23 0.18quarterly 0.14 0.35 0.32
Notes: The table shows the macroeconomic releases used to compute the news indices. In each case, weshow the relevance index, i.e., the percentage of users who set an alert for a particular event, the frequency,
the average publication delay expressed in days, and the values of the coefficients estimated from Equation(1) for the yields of bonds with maturities at 1, 5, and 10 years. The values in bold are different significantlyfrom zero at the 5% confidence level (t-stat based on HAC standard errors). The final three rows show theR2 values obtained from: Equations (1), daily; and Equation (4), monthly (h= 22) and quarterly (h= 66).
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Table 2: Predictive regressionsrx66t f
66t nf
66t
const 0 0.41 -0.35CP 1 0.27 0.74R2 20 4 18
Notes: The table shows the coefficients and the R2 values for equation (8), wherextis in turn defined as rx66t ,
the 66-day holding period excess bond returns average through different maturities; f66t is its fundamentalobtained from the macroeconomic news; and nf66t is the residual part.
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Table 3: Effects of Macroeconomic News on Stock Prices and the ExchangeRateReleases TWEX S&P 500Advance Retail Sales 1.6 0.1Business Inventories -2.5 0.7Capacity Utilization 0.0 24.5Change in Nonfarm Payrolls 13.9 7.2Consumer Confidence 3.7 -6.0Consumer Credit -1.1 5.3Consumer Price Index (MoM) -2.1 1.2CPI Ex Food & Energy (MoM) 1.9 -14.8Domestic Vehicle Sales 1.7 8.5Durable Goods Orders 1.1 9.2
Employment Cost Index -5.2 -2.8Factory Orders 4.7 -18.0Housing Starts 0.5 7.6Import Price Index (MoM) 3.9 -15.4Industrial Production 0.7 -27.4Initial Jobless Claims 1.1 -8.0ISM Manufacturing 10.0 18.7ISM Non-Manf. Composite -1.5 21.6Leading Indicators 3.2 1.8New Home Sales -2.6 -6.2Personal Income -2.9 -4.8Personal Spending 1.8 15.9
Philadelphia Fed. -1.6 19.8PPI Ex Food & Energy (MoM) -9.5 -0.9Producer Price Index (MoM) 3.5 -4.1Retail Sales Less Autos 5.7 37.4Trade Balance 6.5 18.1Unemployment Rate -8.4 -0.3Wholesale Inventories 0.8 -5.3GDP Annualized QoQ A 18.9 -19.1GDP Annualized QoQ S 10.9 -12.7GDP Annualized QoQ T -11.7 -3.5GDP Price Index A 5.5 7.7GDP Price Index S -0.7 6.5GDP Price Index T -4.7 -24.3Nonfarm Productivity P -11.4 -5.7Nonfarm Productivity F 15.0 -18.8Unit Labor Costs P -10.2 -15.5Unit Labor Costs F 6.7 -8.7U. of Michigan Confidence P 3.0 -0.7U. of Michigan Confidence F -1.4 -9.8R2
daily 0.02 0.02monthly 0.00 0.05quarterly 0.00 0.15
Notes: The table shows the macroeconomic releases used to compute the news indices and the coefficientsestimated from Equation (1) for the trade-weighted U.S. dollar index (TWEX) and the SP 500 log differences.The values in bold are significantly different from zero at the 5% confidence level (t-stat based on HACstandard errors). The final three rows show the R2 values obtained from: Equations (1), daily; and Equation(4) , monthly (h= 22) and quarterly (h= 66)
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Table 4: Effects of Macroeconomic News on Bond Yields at the Zero LowerBound1-year 5-year 10-year
Releases Advance Retail Sales 1.35 -0.65 1.73 -0.08 1.11 0.83Business Inventories -0.39 0.27 -0.35 0.23 -0.24 0.33Capacity Utilization 1.76 -1.10 2.13 -1.15 2.02 -1.37Change in Nonfarm Payrolls 3.63 -0.45 3.87 1.20 2.84 1.60Consumer Confidence 1.34 -0.78 1.09 -0.28 0.71 0.28Consumer Credit -0.02 -0.09 -0.12 -0.17 -0.43 0.20Consumer Price Index (MoM) 0.32 -0.09 0.12 0.24 -0.26 0.25CPI Ex Food & Energy (MoM) 0.74 -0.57 1.32 -1.60 1.35 -1.74Domestic Vehicle Sales 1.18 -0.66 0.45 -0.27 -0.14 0.33
Durable Goods Orders 0.66 -0.35 0.78 -0.06 0.67 0.01Employment Cost Index 0.18 0.06 0.87 -1.05 0.96 -1.32Factory Orders 0.49 -0.61 0.79 -0.95 0.98 -1.17Housing Starts 0.28 0.13 0.06 0.96 -0.27 1.04Import Price Index (MoM) -0.08 0.14 -0.04 0.01 -0.04 -0.25Industrial Production -0.19 0.18 -0.11 -0.53 -0.76 -0.30Initial Jobless Claims -1.60 0.75 -1.83 0.40 -1.50 0.10ISM Manufacturing 2.58 -1.43 3.60 -1.34 3.07 -0.63ISM Non-Manf. Composite 1.86 -0.66 2.18 -0.44 1.94 -0.33Leading Indicators 0.22 -0.03 -0.13 1.14 0.24 0.93New Home Sales 0.45 -0.16 0.62 -0.07 0.79 -0.09Personal Income -0.77 0.45 -1.04 0.84 -1.07 1.04
Personal Spending 0.42 -0.31 0.23 -0.17 0.16 0.04Philadelphia Fed. 1.91 -1.22 2.79 -1.28 2.08 -0.55PPI Ex Food & Energy (MoM) 0.23 0.14 0.89 0.52 1.10 0.80Producer Price Index (MoM) -0.06 0.23 -0.50 0.58 -0.47 0.76Retail Sales Less Autos 1.27 -0.42 1.19 -0.24 1.27 -0.48Trade Balance 0.18 0.05 0.85 0.07 1.11 0.13Unemployment Rate -1.81 1.38 -1.37 1.04 -0.78 0.55Wholesale Inventories 0.24 -0.21 -0.09 0.28 -0.23 0.46GDP Annualized QoQ A 2.95 -1.10 3.64 -2.16 3.36 -2.33GDP Annualized QoQ S -0.76 0.48 -1.07 1.55 -1.15 1.66GDP Annualized QoQ T 0.40 -0.49 -0.92 0.03 -0.68 -0.55GDP Price Index A 0.11 0.14 0.41 -0.74 0.07 -0.61GDP Price Index S 0.50 0.35 1.17 0.69 1.01 0.76GDP Price Index T 0.49 -0.19 -0.49 -1.23 -0.09 -1.43Nonfarm Productivity P -2.37 1.14 -3.05 1.07 -2.95 1.06Nonfarm Productivity F -1.72 1.54 -2.68 2.93 -2.16 2.46Unit Labor Costs P -0.55 0.80 -1.45 2.48 -1.84 3.03Unit Labor Costs F 0.06 -0.18 -0.69 0.99 -0.81 1.25U. of Michigan Confidence P 1.32 -0.66 1.47 0.03 1.12 0.21U. of Michigan Confidence F 0.14 -0.12 0.33 -0.73 0.75 -1.11R2
daily 0.10 0.10 0.09monthly 0.19 0.23 0.20quarterly 0.19 0.34 0.32
Notes: The table shows the coefficients estimated from Equation (1) for the yields of bonds with maturitiesf 1 5 d 10 b d th l b d d l b d b l ll th i36